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The Effects of Using Partial or Uncorrected Correlation Matrices When Comparing Network and Latent Variable Models

机译:比较网络模型和潜在变量模型时使用部分或未校正的相关矩阵的影响

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摘要

Network models of the WAIS-IV based on regularized partial correlation matrices have been reported to outperform latent variable models based on uncorrected correlation matrices. The present study sought to compare network and latent variable models using both partial and uncorrected correlation matrices with both types of models. The results show that a network model provided better fit to matrices of partial correlations but latent variable models provided better fit to matrices of full correlations. This result is due to the fact that the use of partial correlations removes most of the covariance common to WAIS-IV tests. Modeling should be based on uncorrected correlations since these represent the majority of shared variance between WAIS-IV test scores.
机译:据报道,基于正则化部分相关矩阵的WAIS-IV网络模型的性能优于基于未校正相关矩阵的潜在变量模型。本研究试图将使用部分和未校正的相关矩阵的网络模型和潜在变量模型与两种类型的模型进行比较。结果表明,网络模型可以更好地拟合部分相关矩阵,而潜在变量模型可以更好地拟合完全相关矩阵。该结果归因于以下事实:使用偏相关消除了WAIS-IV测试常见的大多数协方差。建模应基于未校正的相关性,因为它们代表了WAIS-IV测试分数之间的大部分共享方差。

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